Driving factors and trend prediction for annual runoff in the upper and middle reaches of the yellow river from 1990 to 2020

IF 2.5 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
Jie Liu, Jia Tian, Jingjing Wu, Xuejuan Feng, Zishuo Li, Yingxuan Wang, Qian Ya
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Abstract

The Yellow River Basin (YRB) plays a pivotal role in the water resources management of its region, significantly influenced by the interplay between climate change and human activities, particularly in its upper and middle reaches (UMRYR). This study aims to elucidate the evolving patterns and determinants of runoff within the UMRYR, a matter of considerable importance for the basin’s water resource management, strategy, and distribution. Utilizing the Google Earth Engine (GEE) platform, this research accessed comprehensive datasets including precipitation, drought index, and terrace area, among others, to examine their effects on runoff variations at five gauge stations across the YRB. Terrace data was extracted from Landsat imagery via the Random Forest Model, while annual runoff figures from 1990 to 2020 were sourced from the Sediment Bulletin of China River. Employing the Mann-Kendall test, we assessed the temporal changes in runoff over three decades. In addition, runoff drivers were analyzed by stepwise regression and redundancy analysis, leading to the construction of a multiple linear regression model. The accuracy of predicting annual runoff using the multiple linear model was verified through cross-validation and comparison with the ARIMA time series model. Our findings reveal the efficacy of the random forest algorithm in classifying terraces, achieving an accuracy rate exceeding 0.8. The period from 1990 to 2020 saw a general increase in annual runoff across the five gauging stations in the UMRYR, albeit with variations in the pattern, particularly at the Tangnaihai gauge station which presented the most complex changes. Crucially, three main drivers—summer precipitation (SP), terrace area (TR), and drought index (DI)—were identified as significant predictors in the regression models. The multiple linear regression model outperformed the ARIMA model in forecasting accuracy, underlining the significance of integrating these drivers into runoff prediction models for the UMRYR.
1990-2020 年黄河中上游年径流量的驱动因素和趋势预测
黄河流域(YRB)在该地区的水资源管理中发挥着举足轻重的作用,受到气候变化和人类活动之间相互作用的显著影响,尤其是在其中上游地区(UMRYR)。本研究旨在阐明 UMRYR 流域内径流的演变模式和决定因素,这对该流域的水资源管理、战略和分配具有相当重要的意义。本研究利用谷歌地球引擎(GEE)平台,获取了包括降水量、干旱指数和梯田面积等在内的综合数据集,以研究它们对整个雅鲁藏布江流域五个测站的径流变化的影响。梯田数据通过随机森林模型从 Landsat 图像中提取,1990 年至 2020 年的年径流量数据则来自《中国河流泥沙公报》。通过 Mann-Kendall 检验,我们评估了三十年来径流的时间变化。此外,还通过逐步回归和冗余分析对径流驱动因素进行了分析,从而构建了多元线性回归模型。通过交叉验证以及与 ARIMA 时间序列模型的比较,验证了使用多元线性模型预测年径流的准确性。我们的研究结果表明,随机森林算法在梯田分类方面非常有效,准确率超过了 0.8。从 1990 年到 2020 年,乌姆沁河流域五个测站的年径流量普遍增加,但模式各不相同,尤其是唐乃亥测站的变化最为复杂。最重要的是,三个主要驱动因素--夏季降水量(SP)、阶地面积(TR)和干旱指数(DI)--被确定为回归模型中的重要预测因子。多元线性回归模型的预测精度优于 ARIMA 模型,这凸显了将这些驱动因素纳入乌马河流域径流预测模型的重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Environmental Research Communications
Environmental Research Communications ENVIRONMENTAL SCIENCES-
CiteScore
3.50
自引率
0.00%
发文量
136
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